조합형 Fixed Point 알고리즘의 독립성분분석을 이용한 영상의 특징추출

Image Feature Extraction Using Independent Component Analysis of Hybrid Fixed Point Algorithm

  • 조용현 (대구가톨릭대학교 컴퓨터정보통신) ;
  • 강현구 (영남이공대학 전자정보계열)
  • 투고 : 2002.10.17
  • 심사 : 2003.01.20
  • 발행 : 2003.02.28

초록

This paper proposes an efficient feature extraction of the images by using independent component analysis(ICA) based on neural networks of the hybrid learning algorithm. The proposed learning algorithm is the fixed point(FP) algorithm based on Newton method and moment. The Newton method, which uses to the tangent line for estimating the root of function, is applied for fast updating the inverse mixing matrix. The moment is also applied for getting the better speed-up by restraining an oscillation due to compute the tangent line. The proposed algorithm has been applied to the 10,000 image patches of $12{\times}12$-pixel that are extracted from 13 natural images. The 144 features of $12{\times}12$-pixel and the 160 features of $16{\times}16$-pixel have been extracted from all patches, respectively. The simulation results show that the extracted features have a localized characteristics being included in the images in space, as well as in frequency and orientation. And the proposed algorithm has better performances of the learning speed than those using the conventional FP algorithm based on Newton method.

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